Doubly Robust Estimation of Causal Excursion Effects in Micro-Randomized Trials with Missing Longitudinal Outcomes
Micro-randomized trials (MRTs) are increasingly utilized for optimizing mobile health interventions, with the causal excursion effect (CEE) as a central quantity for evaluating interventions under policies that deviate from the experimental policy. However, MRT often contains missing data due to rea...
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Zusammenfassung: | Micro-randomized trials (MRTs) are increasingly utilized for optimizing
mobile health interventions, with the causal excursion effect (CEE) as a
central quantity for evaluating interventions under policies that deviate from
the experimental policy. However, MRT often contains missing data due to
reasons such as missed self-reports or participants not wearing sensors, which
can bias CEE estimation. In this paper, we propose a two-stage, doubly robust
estimator for CEE in MRTs when longitudinal outcomes are missing at random,
accommodating continuous, binary, and count outcomes. Our two-stage approach
allows for both parametric and nonparametric modeling options for two nuisance
parameters: the missingness model and the outcome regression. We demonstrate
that our estimator is doubly robust, achieving consistency and asymptotic
normality if either the missingness or the outcome regression model is
correctly specified. Simulation studies further validate the estimator's
desirable finite-sample performance. We apply the method to HeartSteps, an MRT
for developing mobile health interventions that promote physical activity. |
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DOI: | 10.48550/arxiv.2411.10620 |